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急性心力衰竭不良结局的预后标志物:利用机器学习和网络分析结合真实临床数据

Prognostic Markers of Adverse Outcomes in Acute Heart Failure: Use of Machine Learning and Network Analysis with Real Clinical Data.

作者信息

Shchekochikhin Dmitri, Charaya Kristina, Shilova Alexandra, Nesterov Alexey, Pershina Ekaterina, Sherashov Andrei, Panov Sergei, Ibraimov Shevket, Bogdanova Alexandra, Suvorov Alexander, Trushina Olga, Bguasheva Zarema, Rozina Nina, Klimenko Alesya, Mareyeva Varvara, Voinova Natalia, Dukhnovskaya Alexandra, Konchina Svetlana, Zakaryan Eva, Kopylov Philipp, Syrkin Abram, Andreev Denis

机构信息

Functional and Ultrasound Diagnostics, Department of Cardiology, Sechenov University, 8 Trubetskaya Str., Moscow 119991, Russia.

City Clinical Hospital No.1, 8 Leninsky Ave., Moscow 119049, Russia.

出版信息

J Clin Med. 2025 Mar 13;14(6):1934. doi: 10.3390/jcm14061934.

Abstract

: Acute heart failure (AHF) is one of the leading causes of admissions to the emergency department (ED). There is a need to develop an easy-to-use score that can be used in the ED to risk-stratify patients with AHF and in hospitalization decisions regarding cardiac wards or intensive care units (ICUs). : A retrospective observational study was conducted at a city hospital. The data from the presentation of AHF patients at the ED were collected. The combined primary endpoint included death from any cause during hospitalization or transfer to an intensive care unit (ICU) for using inotropes/vasopressors. Feature selection was performed using artificial intelligence. : From August 2020 to August 2021, 908 patients were enrolled (mean age: 71.6 ± 13 years; 500 (55.1%) men). We found significant predictors of in-hospital mortality and ICU transfers for inotrope/vasopressor use and built two models to assess the need for ICU admission of patients from the ED. The first model included SpO < 90%, QTc duration, prior diabetes mellitus and HF diagnosis, serum chloride concentration, respiratory rate and atrial fibrillation on admission, blood urea nitrogen (BUN) levels, and any implanted devices. The second model included left ventricular end-diastolic size, systolic blood pressure, pulse blood pressure, BUN levels, right atrium size, serum chloride, sodium and uric acid concentrations, prior loop diuretic use, and pulmonary artery systolic blood pressure. : We developed two models that demonstrated a high negative predictive value, which allowed us to distinguish patients with low risk and determine patients who can be hospitalized and sent from the ED to the floor. These easy-to-use models can be used at the ED.

摘要

急性心力衰竭(AHF)是急诊室(ED)收治患者的主要原因之一。需要开发一种易于使用的评分系统,可用于急诊室对AHF患者进行风险分层,并用于有关心脏病房或重症监护病房(ICU)的住院决策。

在一家城市医院进行了一项回顾性观察研究。收集了AHF患者在急诊室就诊时的数据。联合主要终点包括住院期间任何原因导致的死亡或因使用血管活性药物而转入重症监护病房(ICU)。使用人工智能进行特征选择。

2020年8月至2021年8月,共纳入908例患者(平均年龄:71.6±13岁;500例(55.1%)为男性)。我们发现了院内死亡率和因使用血管活性药物而转入ICU的显著预测因素,并建立了两个模型来评估急诊室患者入住ICU的必要性。第一个模型包括SpO₂<90%、QTc间期、既往糖尿病和心力衰竭诊断、血清氯浓度、呼吸频率、入院时房颤、血尿素氮(BUN)水平以及任何植入装置。第二个模型包括左心室舒张末期内径、收缩压、脉压、BUN水平、右心房大小、血清氯、钠和尿酸浓度、既往袢利尿剂使用情况以及肺动脉收缩压。

我们开发了两个具有高阴性预测价值的模型,这使我们能够区分低风险患者,并确定可住院并从急诊室转至普通病房的患者。这些易于使用的模型可在急诊室使用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5bfe/11943172/e116ae6e9552/jcm-14-01934-g001.jpg

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